Department of Computer Science, Ariel University, 40700, Ariel, Israel.
Department of Chemical Engineering, Biotechnology and Materials, Ariel University, 40700, Ariel, Israel.
Sci Rep. 2021 Jun 30;11(1):13577. doi: 10.1038/s41598-021-92559-4.
Grapevine (Vitis vinifera L.) currently includes thousands of cultivars. Discrimination between these varieties, historically done by ampelography, is done in recent decades mostly by genetic analysis. However, when aiming to identify archaeobotanical remains, which are mostly charred with extremely low genomic preservation, the application of the genomic approach is rarely successful. As a result, variety-level identification of most grape remains is currently prevented. Because grape pips are highly polymorphic, several attempts were made to utilize their morphological diversity as a classification tool, mostly using 2D image analysis technics. Here, we present a highly accurate varietal classification tool using an innovative and accessible 3D seed scanning approach. The suggested classification methodology is machine-learning-based, applied with the Iterative Closest Point (ICP) registration algorithm and the Linear Discriminant Analysis (LDA) technique. This methodology achieved classification results of 91% to 93% accuracy in average when trained by fresh or charred seeds to test fresh or charred seeds, respectively. We show that when classifying 8 groups, enhanced accuracy levels can be achieved using a "tournament" approach. Future development of this new methodology can lead to an effective seed classification tool, significantly improving the fields of archaeobotany, as well as general taxonomy.
葡萄(Vitis vinifera L.)目前包含数千个品种。这些品种的区分,在历史上主要通过植物标本学进行,而在最近几十年主要通过遗传分析进行。然而,当目标是识别考古植物遗存时,由于其大多碳化且基因组保存极低,基因组方法的应用很少成功。因此,目前大多数葡萄遗存的品种鉴定都受到阻碍。由于葡萄种子高度多态性,人们曾多次尝试利用其形态多样性作为分类工具,主要使用二维图像分析技术。在这里,我们提出了一种使用创新和易于使用的 3D 种子扫描方法的高度准确的品种分类工具。所提出的分类方法基于机器学习,应用迭代最近点 (ICP) 注册算法和线性判别分析 (LDA) 技术。该方法在分别用新鲜或碳化种子训练和测试新鲜或碳化种子时,平均达到 91%至 93%的分类准确率。我们表明,当对 8 个组进行分类时,可以使用“锦标赛”方法达到更高的准确度水平。这种新方法的未来发展可以导致一种有效的种子分类工具,极大地改进考古学和一般分类学领域。